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Semi-automatic aortic valve tract segmentation in 3D cardiac magnetic resonance images using shape-based B-spline explicit active surfaces

机译:使用基于形状的B样条显式有源表面的三维心脏磁共振图像中的半自动主动脉瓣膜分割

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Accurate preoperative sizing of the aortic annulus (AoA) is crucial to determine the best fitting prosthesis to be implanted during transcatheter aortic valve (AV) implantation (TAVI). Although multidetector row computed tomography is currently the standard imaging modality for such assessment, 3D cardiac magnetic resonance (CMR) is a feasible radiation-free alternative. However, automatic AV segmentation and sizing in 3D CMR images is so far underexplored. In this sense, this study proposes a novel semi-automatic algorithm for AV tract segmentation and sizing in 3D CMR images using the recently presented shape-based B-spline Explicit Active Surfaces (BEAS) framework. Upon initializing the AV tract surface using two user-defined points, a dual-stage shape-based BEAS evolution is performed to segment the patient-specific AV wall. The obtained surface is then aligned with multiple reference AV tract surfaces to estimate the location of the aortic annulus, allowing to extract the relevant clinical measurements. The framework was validated in thirty datasets from a publicly available CMR benchmark, assessing the segmentation accuracy and the measurements' agreement against manual sizing. The automated segmentation showed an average absolute distance error of 0.54 mm against manually delineated surfaces, while demonstrating to be robust against the algorithm's parameters. In its turn, automated AoA area-derived diameters showed an excellent agreement against manual-based ones (-0.30±0.77 mm), being comparable to the interobserver agreement. Overall, the proposed framework proved to be accurate, robust and computationally efficient (around 1 sec) for AV tract segmentation and sizing in 3D CMR images, thus showing its potential for preoperative TAVI planning.
机译:主动脉环(AOA)的精确术前尺寸至关重要,以确定在经螺旋管主动脉瓣(AV)植入(Tavi)期间植入的最佳拟合假体。虽然多传输号行计算机断层扫描是目前用于这种评估的标准成像模型,但是3D心脏磁共振(CMR)是一种可行的无辐射替代方案。但是,到目前为止,3D CMR图像中的自动AV分段和大小尺寸是望无望观的。从这个意义上讲,本研究提出了一种新的半自动算法,用于使用最近呈现的基于形状的B样条显式有源表面(BEAS)框架的3D CMR图像中的AV散流分段和大小。使用两个用户定义的点初始化AV散射表面时,执行基于双级形状的BEA的进化以分割患者特定的AV壁。然后将所获得的表面与多个参考AV道表面对齐以估计主动脉环的位置,从而允许提取相关的临床测量。该框架在三十个数据集中验证了来自公开可用的CMR基准,评估分割准确性和测量对手动施胶的协议。自动分割显示手动描绘的表面的平均绝对距离误差为0.54mm,同时对算法的参数进行稳健。轮到它,自动化的AOA区域导出的直径显示出对手动的基于手动(-0.30±0.77 mm)的良好协议,与Interobserver协议相当。总的来说,所提出的框架被证明是准确,稳健和计算的高效(左右1秒),用于AV道分割和3D CMR图像中的尺寸,从而显示出术前Tavi规划的潜力。

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